[{"data":1,"prerenderedAt":-1},["ShallowReactive",2],{"project-9857":3},{"id":4,"name":5,"fullName":6,"owner":7,"repo":5,"description":8,"homepage":9,"htmlUrl":10,"language":10,"languages":10,"totalLinesOfCode":10,"stars":11,"forks":12,"watchers":13,"openIssues":14,"contributorsCount":15,"subscribersCount":15,"size":15,"stars1d":15,"stars7d":16,"stars30d":17,"stars90d":15,"forks30d":15,"starsTrendScore":18,"compositeScore":19,"rankGlobal":10,"rankLanguage":10,"license":10,"archived":20,"fork":20,"defaultBranch":21,"hasWiki":22,"hasPages":20,"topics":23,"createdAt":10,"pushedAt":10,"updatedAt":29,"readmeContent":30,"aiSummary":31,"trendingCount":15,"starSnapshotCount":15,"syncStatus":16,"lastSyncTime":32,"discoverSource":33},9857,"awesome-ml-courses","luspr\u002Fawesome-ml-courses","luspr","Awesome free machine learning and AI courses with video lectures.","",null,3081,320,109,3,0,2,7,1,58.22,false,"master",true,[24,25,26,27,28],"ai-courses","artificial-intelligence","deep-learning","machine-learning","reinforcement-learning","2026-06-12 04:00:47","# Awesome Machine Learning and AI Courses\n\nA curated list of awesome, free machine learning and artificial intelligence courses \nwith video lectures.\nAll courses are available as high-quality video lectures by some of the best\nAI researchers and teachers on this planet. \n\nBesides the video lectures, I linked course websites with lecture notes, \nadditional readings and assignments.\n\n\n## Introductory Lectures\nThese are great courses to get started in machine learning and AI.\nNo prior experience in ML and AI is needed. You should have some knowledge of\nlinear algebra, introductory calculus and probability. \nSome programming experience is also recommended.\n\n\n* [Machine Learning (Stanford CS229)](https:\u002F\u002Fwww.youtube.com\u002Fplaylist?list=PLoROMvodv4rMiGQp3WXShtMGgzqpfVfbU) | [Course website](http:\u002F\u002Fcs229.stanford.edu\u002Fsyllabus-autumn2018.html)\n\n    This modern classic of machine learning courses is a great starting point \n    to understand the concepts and techniques of machine learning. \n    The course covers many widely used techniques, \n    The lecture notes are detailed and review necessary mathematical concepts.\n\n\n* [Convolutional Neural Networks for Visual Recognition (Stanford CS231n)](https:\u002F\u002Fwww.youtube.com\u002Fplaylist?list=PL3FW7Lu3i5JvHM8ljYj-zLfQRF3EO8sYv) | [Course website](https:\u002F\u002Fcs231n.github.io\u002F)\n\n    A great way to start with deep learning. The course focuses on \n    convolutional neural networks and computer vision, but also \n    gives an overview on recurrent networks and reinforcement learning.\n\n\n* [Introduction to Artificial Intelligence (UC Berkeley CS188)](https:\u002F\u002Fwww.youtube.com\u002Fplaylist?list=PL7k0r4t5c108AZRwfW-FhnkZ0sCKBChLH) | [Course website](https:\u002F\u002Finst.eecs.berkeley.edu\u002F~cs188\u002Ffa18\u002Findex.html)\n    \n    Covers the whole field of AI. From search methods, game trees and machine learning to Bayesian networks and reinforcement learning.\n\n* [Applied Machine Learning 2020 (Columbia)](https:\u002F\u002Fwww.youtube.com\u002Fplaylist?list=PL_pVmAaAnxIRnSw6wiCpSvshFyCREZmlM)\n    \n    Alternative to Stanford CS229. As the name implies, this course takes a more\n    applied perspective than Andrew Ng's machine learning lecture at Stanford. \n    You will see more code than mathematics. Concepts and algorithms are\n    using the popular Python libraries scikit-learn and Keras.\n\n\n* [Introduction to Reinforcement learning with David Silver (DeepMind)](https:\u002F\u002Fwww.youtube.com\u002Fplaylist?list=PLqYmG7hTraZBiG_XpjnPrSNw-1XQaM_gB) | [Course website](https:\u002F\u002Fwww.davidsilver.uk\u002Fteaching\u002F)\n\n    Introduction to reinforcement learning by one of the leading researchers behind \n    AlphaGo and AlphaZero.    \n\n\n* [Natural Language Processing with Deep Learning (Stanford CS224N)](https:\u002F\u002Fwww.youtube.com\u002Fplaylist?list=PLoROMvodv4rOSH4v6133s9LFPRHjEmbmJ) | [Course website](http:\u002F\u002Fweb.stanford.edu\u002Fclass\u002Fcs224n\u002F)\n\n    Modern NLP techniques from recurrent neural networks and word embeddings\n    to transformers and self-attention. Covers applied topics like questions answering and \n    text generation.\n    \n* [Deep Learning - NYU - 2020](https:\u002F\u002Fwww.youtube.com\u002Fplaylist?list=PLLHTzKZzVU9eaEyErdV26ikyolxOsz6mq) | [Course website](https:\u002F\u002Fatcold.github.io\u002Fpytorch-Deep-Learning\u002F)\n\n    This course concerns the latest techniques in deep learning and representation learning, focusing on supervised and unsupervised deep learning, embedding methods, metric learning, convolutional and recurrent nets, with applications to computer vision, natural language understanding, and speech recognition.\n\n* [Machine Learning with Graphs (Stanford CS224W)](https:\u002F\u002Fwww.youtube.com\u002Fplaylist?list=PLoROMvodv4rPLKxIpqhjhPgdQy7imNkDn) | [Course website](https:\u002F\u002Fweb.stanford.edu\u002Fclass\u002Fcs224w\u002F)\n  \n  Comprehensive overview of machine learning techniques applied to graph-structured data. Topics include node embeddings, graph neural networks (GNNs), heterogeneous graphs, knowledge graphs, and their applications.\n  The course also covers advanced topics like neural subgraph matching, graph transformers, and scaling GNNs to large graphs.\n\n  \n## Advanced Lectures\n\nAdvanced courses that require prior knowledge in machine learning and AI. \n\n* [Deep Unsupervised Learning (UC Berkeley CS294)](https:\u002F\u002Fwww.youtube.com\u002Fchannel\u002FUCf4SX8kAZM_oGcZjMREsU9w\u002Fvideos) | [Course website](https:\u002F\u002Fsites.google.com\u002Fview\u002Fberkeley-cs294-158-sp19\u002Fhome)\n\n\n* [Frontiers of Deep Learning (Simons Institute)](https:\u002F\u002Fwww.youtube.com\u002Fplaylist?list=PLgKuh-lKre11ekU7g-Z_qsvjDD8cT-hi9) | [Course website](https:\u002F\u002Fsimons.berkeley.edu\u002Fworkshops\u002Fdl2019-1)\n\n\n* [New Deep Learning Techniques](https:\u002F\u002Fwww.youtube.com\u002Fplaylist?list=PLHyI3Fbmv0SdM0zXj31HWjG9t9Q0v2xYN) | [Course website](http:\u002F\u002Fwww.ipam.ucla.edu\u002Fprograms\u002Fworkshops\u002Fnew-deep-learning-techniques\u002F?tab=overview)\n\n* [Geometry of Deep Learning (Microsoft Research)](https:\u002F\u002Fwww.youtube.com\u002Fplaylist?list=PLD7HFcN7LXRe30qq36It2XCljxc340O_d) | [Course website](https:\u002F\u002Fwww.microsoft.com\u002Fen-us\u002Fresearch\u002Fevent\u002Fai-institute-2019\u002F)\n\n* [Deep Multi-Task and Meta Learning (Stanford CS330) Autumn 2022](https:\u002F\u002Fwww.youtube.com\u002Fwatch?v=bkVCAk9Nsss&list=PLoROMvodv4rNjRoawgt72BBNwL2V7doGI) | [Course Website](http:\u002F\u002Fcs330.stanford.edu\u002F)\n\n* [Mathematics of Machine Learning Summer School 2019 (University of Washington)](https:\u002F\u002Fwww.youtube.com\u002Fplaylist?list=PLTPQEx-31JXhguCush5J7OGnEORofoCW9) | [Course Website](http:\u002F\u002Fmathofml.cs.washington.edu\u002F)\n\n* [Probabilistic Graphical Models (Carneggie Mellon University)](https:\u002F\u002Fwww.youtube.com\u002Fplaylist?list=PLoZgVqqHOumTY2CAQHL45tQp6kmDnDcqn) | [Course Website](https:\u002F\u002Fsailinglab.github.io\u002Fpgm-spring-2019\u002F)\n\n* [Probabilistic and Statistical Machine Learning 2020 (University of Tübingen)](https:\u002F\u002Fwww.youtube.com\u002Fplaylist?list=PL05umP7R6ij1tHaOFY96m5uX3J21a6yNd)\n\n* [Statistical Machine Learning 2020 (University of Tübingen)](https:\u002F\u002Fwww.youtube.com\u002Fplaylist?list=PL05umP7R6ij2XCvrRzLokX6EoHWaGA2cC)\n\n* [Mobile Sensing and Robotics 2019 (Bonn University)](https:\u002F\u002Fwww.youtube.com\u002Fplaylist?list=PLgnQpQtFTOGQJXx-x0t23RmRbjp_yMb4v)\n\n* [Sensors and State Estimation Course 2020 (Bonn University)](https:\u002F\u002Fwww.youtube.com\u002Fplaylist?list=PLgnQpQtFTOGQh_J16IMwDlji18SWQ2PZ6)\n\n* [Photogrammetry 2015 (Bonn University)](https:\u002F\u002Fwww.youtube.com\u002Fplaylist?list=PLgnQpQtFTOGRsi5vzy9PiQpNWHjq-bKN1)\n\n* [Advanced Deep Learning & Reinforcement Learning 2020 (DeepMind \u002F UCL)](https:\u002F\u002Fwww.youtube.com\u002Fplaylist?list=PLqYmG7hTraZDNJre23vqCGIVpfZ_K2RZs)\n\n* [Data-Driven Dynamical Systems with Machine Learning](https:\u002F\u002Fwww.youtube.com\u002Fplaylist?list=PLMrJAkhIeNNR6DzT17-MM1GHLkuYVjhyt)\n\n* [Data-Driven Control with Machine Learning](https:\u002F\u002Fwww.youtube.com\u002Fplaylist?list=PLMrJAkhIeNNQkv98vuPjO2X2qJO_UPeWR)\n\n* [ECE AI Seminar Series 2020 (NYU)](https:\u002F\u002Fwww.youtube.com\u002Fplaylist?list=PLhwo5ntex8iY9xhpSwWas451NgVuqBE7U)\n\n* [CS287 Advanced Robotics at UC Berkeley Fall 2019](https:\u002F\u002Fwww.youtube.com\u002Fplaylist?list=PLwRJQ4m4UJjNBPJdt8WamRAt4XKc639wF)\n\n* [CSEP 546 - Machine Learning (AU 2019) (U of Washington)](https:\u002F\u002Fwww.youtube.com\u002Fplaylist?list=PLTPQEx-31JXj87XLsYutYGKw6K9dNaD36)\n\n* [Deep Reinforcment Learning, Decision Making and Control (UC Berkeley CS285)](https:\u002F\u002Fwww.youtube.com\u002Fplaylist?list=PLkFD6_40KJIwhWJpGazJ9VSj9CFMkb79A)\n\n* [Stanford Convex Optimization](https:\u002F\u002Fwww.youtube.com\u002Fplaylist?list=PLdrixi40lpQm5ksInXlRon1eRwq_gzIcw)\n\n* [Stanford CS224U: Natural Language Understanding | Spring 2019](https:\u002F\u002Fwww.youtube.com\u002Fplaylist?list=PLoROMvodv4rObpMCir6rNNUlFAn56Js20)\n\n* [Full Stack Deep Learning 2019](https:\u002F\u002Fwww.youtube.com\u002Fplaylist?list=PL1T8fO7ArWlcf3Hc4VMEVBlH8HZm_NbeB)\n\n* [Emerging Challenges in Deep Learning](https:\u002F\u002Fwww.youtube.com\u002Fplaylist?list=PLgKuh-lKre10BpafDrv0fg2VNUweWXWVd)\n\n* [Deep|Bayes 2019 Summer School](https:\u002F\u002Fwww.youtube.com\u002Fplaylist?list=PLe5rNUydzV9QHe8VDStpU0o8Yp63OecdW)\n\n* [CMU Neural Nets for NLP 2020](https:\u002F\u002Fwww.youtube.com\u002Fplaylist?list=PL8PYTP1V4I8CJ7nMxMC8aXv8WqKYwj-aJ)\n\n* [New Directions in Reinforcement Learning and Control (Institure for Advanced Study)](https:\u002F\u002Fwww.youtube.com\u002Fplaylist?list=PLdDZb3TwJPZ61sGqd6cbWCmTc275NrKu3)\n\n* [Workshop on Theory of Deep Learning: Where next (Institure for Advanced Study)](https:\u002F\u002Fwww.youtube.com\u002Fplaylist?list=PLdDZb3TwJPZ5dqqg_S-rgJqSFeH4DQqFQ)\n\n* [Deep Learning: Alchemy or Science? (Institure for Advanced Study)](https:\u002F\u002Fwww.youtube.com\u002Fplaylist?list=PLdDZb3TwJPZ7aAxhIHALBoh8l6-UxmMNP)\n\n* [Theoretical Machine Learning Lecture Series (Institure for Advanced Study)](https:\u002F\u002Fwww.youtube.com\u002Fplaylist?list=PLdDZb3TwJPZ5VLprf2VUfC0h1zOGvV_gz)\n\n* [Mathematics of Big Data and Machine Learning (MIT)](https:\u002F\u002Fwww.youtube.com\u002Fplaylist?list=PLUl4u3cNGP62uI_DWNdWoIMsgPcLGOx-V)\n\n* [Introduction to Data-Centric AI (MIT)](https:\u002F\u002Fdcai.csail.mit.edu\u002F) | [Lecture videos](https:\u002F\u002Fwww.youtube.com\u002Fwatch?v=ayzOzZGHZy4&list=PLnSYPjg2dHQKdig0vVbN-ZnEU0yNJ1mo5) | [Lab assignments](https:\u002F\u002Fgithub.com\u002Fdcai-course\u002Fdcai-lab)\n\n* [Transformers as a Computational Model (UC Berkeley, Simons Institute)](https:\u002F\u002Fwww.youtube.com\u002Fplaylist?list=PLgKuh-lKre11RuxGM038u0OSxVdCicIMF)\n","该项目是一个精心整理的免费机器学习和人工智能课程列表，附有视频讲座。它汇集了来自全球顶尖AI研究者和教师的高质量视频课程，涵盖从入门到进阶的广泛主题，包括机器学习、深度学习、强化学习等，并提供课程网站链接以便访问讲义、补充阅读材料及作业。适合希望系统性地学习AI相关知识的学生、研究人员或任何对AI感兴趣的人士，尤其是那些具备一定线性代数、微积分和概率论基础以及编程经验的学习者。","2026-06-11 03:25:02","top_topic"]